UBC

Research Associate - Biostatistics

UBC Hospital Site - Vancouver, BC, Canada Full time
Academic

Job Category

Faculty Non Bargaining

Job Title

Research Associate - Biostatistics

Department

Brubacher Laboratory | Department of Emergency Medicine | Faculty of Medicine (Jeffrey Brubacher)

Posting End Date

June 6, 2026

Note: Applications will be accepted until 11:59 PM on the Posting End Date.



Job End Date

June 30, 2028

 

 

The expected pay (or pay range) for this position is $76,128 - $80,000 per annum. This appointment is for a two-year term, with the possibility of renewal subject to funding and performance.

APPLICATION PROCEDURE

An application package should include:

  • A one-page cover letter outlining the applicant’s relevant statistical training and experience with PTSD and injury outcome research

  • A detailed curriculum vitae;

  • Contact information for referees

Review of applications will begin June 8, 2026 and continue until the position is filled. The anticipated start date for this position is July 1, 2026 or upon a date to be mutually agreed.

At UBC, we believe that attracting and sustaining a diverse workforce is key to the successful pursuit of excellence in research, innovation, and learning for all faculty, staff and students. Our commitment to employment equity helps achieve inclusion and fairness, brings rich diversity to UBC as a workplace, and creates the necessary conditions for a rewarding career. ​​​​​​

Brubacher Lab in the Department of Emergency and the UBC Road Safety and Public Health Research Group (RSPH.med.ubc.ca) is seeking a full-time Research Associate to support a research program focused on recovery following traumatic injury, with emphasis on post-traumatic stress symptoms (PTSS), post-traumatic growth (PTG), and functional outcomes. Our work integrates clinical, epidemiologic, and quantitative methods to understand the complex and heterogeneous trajectories of recovery after road trauma and other injuries, with the goal of improving patient outcomes and informing policy.

The successful candidate will bring advanced statistical expertise and substantive knowledge in trauma recovery and mental health. They will play a central role in analyzing longitudinal cohort data to characterize patterns of psychological and functional recovery, identify predictors of adverse and resilient trajectories, and examine the interplay between mental and physical health outcomes. This role is ideally suited to candidates with experience in PTSD or injury outcomes research who are motivated to apply rigorous quantitative methods to clinically meaningful questions.

The Research Associate will provide statistical leadership in the design and analysis of complex longitudinal and observational studies, including large inception cohorts of injured patients. Working within an interdisciplinary team, the candidate will apply advanced statistical and computational methods - including longitudinal and survival modeling, Bayesian hierarchical models, spatial and spatio-temporal approaches, machine learning, and latent variable and mixture modeling - to large-scale cohort data. These analyses will identify predictors of recovery outcomes, characterize mental health trajectories (including PTSS and PTG), and quantify injury-related health burdens to inform clinical practice and public health policy.

The Research Associate will work closely with the Principal Investigator to support ongoing projects and develop new research initiatives. Responsibilities include leading statistical analysis plans, developing reproducible workflows, mentoring trainees, and disseminating findings through peer-reviewed publications and scientific presentations.

This position offers the opportunity to contribute to high-impact interdisciplinary research addressing critical public health challenges in injury prevention, trauma recovery, and population health.

RESPONSIBILITIES

Reporting to the Dr. Jeffrey Brubacher, the incumbent will be responsible for:

  • Serve as the primary biostatistical expertise in the design, analysis, and interpretation of observational and longitudinal cohort studies.

  • Develop and implement advanced statistical models, including longitudinal models, latent mixture models, survival and competing risks models, Bayesian hierarchical models, and structural equation models.

  • Apply spatial and spatio-temporal statistical methods to investigate geographic variation and inequities in injury and healthcare access.

  • Implement machine learning and predictive modeling approaches to construct robust clinical prediction tools and identify outcome trajectories.

  • Lead analyses examining trajectories of PTSS, PTG, and functional recovery following traumatic injury.

  • Apply person-centered analytic approaches (e.g., latent profile analysis (LPA), latent growth mixture modeling (LGMM), latent transition analysis (LTA)) to identify distinct recovery patterns and transitions over time.

  • Integrate mental health, functional, and quality-of-life outcomes to examine the joint evolution of psychological and physical recovery.

  • Help define and measure key trauma recovery outcomes, including PTSD symptoms and patterns of recovery.

  • Work with clinical investigators to ensure appropriate interpretation of findings in the context of trauma care, mental health, and rehabilitation.

  • Translate complex longitudinal findings into clinically relevant insights to inform patient care, policy, and intervention development.

  • Lead the development of comprehensive statistical analysis plans, reproducible workflows, and rigorous data management strategies for complex research projects.

  • Conduct statistical analyses using R and specialized statistical software, including Bayesian modeling tools ((e.g., Stan, JAGS) and structural equation modeling software (e.g., Mplus).

  • Collaborate closely with clinicians, epidemiologists, and health services researchers to integrate quantitative methods into interdisciplinary research projects.

  • Mentor graduate students, trainees, and research staff in statistical methodology and quantitative data analysis.

  • Contribute to grant applications and new research proposals by generating preliminary data and developing methodological frameworks.

  • Take a lead role in authoring peer-reviewed publications and presenting at international scientific conferences.

QUALIFICATIONS

Successful applicants will have:

  • PhD in Biostatistics or Statistics.

  • Strong expertise in advanced statistical modeling, including longitudinal data analysis, survival analysis, Bayesian modeling, structural equation modeling, and clustering or latent mixture methods.

  • Experience applying spatial and spatio-temporal statistical methods in health or epidemiological research.

  • Substantive knowledge of mental health outcomes, trauma recovery, or related fields (e.g., PTSD, rehabilitation, quality of life), with the ability to link statistical methods to clinically meaningful questions.

  • Strong programming and analytical skills in R and statistical modeling software.

  • Demonstrated track record of first-author peer-reviewed publications in quantitative or health-related research.

  • Experience analyzing large and complex health or population-based datasets.

  • Strong communication skills and ability to translate quantitative findings to multidisciplinary audiences.

  • Demonstrated ability to work independently and provide visionary methodological leadership within collaborative research teams

  • Preferred

    • Experience in PTSD research, trauma recovery, or injury outcomes research.

    • Experience with person-centered methods (e.g., LPA, LGMM, LTA) or structural equation modeling in applied health research.

    • Experience working with inception cohorts or longitudinal follow-up studies.

    • Familiarity with validated mental health instruments (e.g., PTSD scales, depression/anxiety measures, HRQoL tools).

    • Experience mentoring trainees and contributing to grant development (e.g., CIHR or equivalent).

    • Experience applying machine learning and predictive modeling methods in health research.

    • Experience analyzing longitudinal cohort data related to injury, trauma, or mental health outcomes (e.g., PTSD, quality of life).

    • Experience mentoring graduate students or supervising research staff.

    • Experience contributing to successful grant applications (e.g., CIHR).

  • Effective oral and written communications, with the ability to compose clear and grammatically correct correspondence, business documents, and administrative communications.

  • Willingness to respect diverse perspectives, including perspectives in conflict with one’s own.

  • Demonstrates a commitment to enhancing one’s own awareness, knowledge, and skills related to equity, diversity, and inclusion.